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Pro-Detection of Atrial Fibrillation Using Mixture of Experts

机译:专家混合预防心房颤动

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A reliable detection of atrial fibrillation (AF) in Electrocardiogram (ECG) monitoring systems is significant for early treatment and health risk reduction. Various ECG mining and analysis studies have addressed a wide variety of clinical and technical issues. However, there is still room for improvement mostly in two areas. First, the morphological descriptors not only between different patients or patient clusters but also within the same patient are potentially changing. As a result, the model constructed using an old training data no longer needs to be adjusted in order to identify new concepts. Second, the number and types of ECG parameters necessary for detecting AF arrhythmia with high quality encounter a massive number of challenges in relation to computational effort and time consumption. We proposed a mixture technique that caters to these limitations. It includes an active learning method in conjunction with an ECG parameter customization technique to achieve a better AF arrhythmia detection in real-time applications. The performance of our proposed technique showed a sensitivity of 95.2%, a specificity of 99.6%, and an overall accuracy of 99.2%.
机译:在心电图(ECG)监测系统中可靠地检测房颤(AF)对于早期治疗和降低健康风险具有重要意义。各种ECG挖掘和分析研究已解决了许多临床和技术问题。但是,仍然有很大的改进空间,主要是在两个方面。首先,不仅在不同患者或患者群之间,而且在同一患者内,形态学描述符都有可能发生变化。结果,不再需要调整使用旧训练数据构建的模型以识别新概念。其次,高质量检测房颤心律失常所需的ECG参数的数量和类型在计算工作量和时间消耗方面面临大量挑战。我们提出了一种可满足这些限制的混合技术。它包括主动学习方法和ECG参数自定义技术,可在实时应用中实现更好的AF心律失常检测。我们提出的技术的性能显示出95.2%的灵敏度,99.6%的特异性和99.2%的整体准确性。

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